Crop disease detection and classification based on hybrid information approach

Q3 Social Sciences
Informatologia Pub Date : 2018-06-30 DOI:10.32914/I.51.1-2.1
S. Vijayalakshmi, D. Murugan
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引用次数: 2

Abstract

The objective of this paper to identify the diseases in the leaves of the all plants. Plant disease diagnosis helps to improve both the quality and quantity of crop productivity. In existing, to detect the diseases they used the spectroscopic techniques. These techniques are very expensive and can only be utilized by trained persons only. This work proposes an approach for the detection of leaf diseases based on the characterization of texture, shape and color properties. The detection of diseases which are detected using ISRC(improved sparse Representation Classifier) technique. First the GENABC clustering approach is applied to the input image to segment the affected area. Then extract the features from the affected area by using feature extraction techniques. In this paper Improved Transform Encoded Local Pattern used to extract the texture feature, Enhanced Gradient Feature (EGF) to extract the shape and Improved Color Histogram Techniques(ICH) are used to extract the color. And then these features are given to the ISRC classifier to get the exact type of disease on affected leaves. To analyze the performance of the proposed method we use four metrics. They are classification accuracy, error rate, precision value and recall value. From the analysis of experimental results, the ISRC method provides the best result than the existing approach.
基于杂交信息方法的作物病害检测与分类
本文的目的是鉴定所有植物叶片的病害。植物病害诊断有助于提高作物产量的质量和数量。在现有的情况下,他们使用光谱技术来检测疾病。这些技术非常昂贵,只能由受过训练的人员使用。本文提出了一种基于纹理、形状和颜色特征的叶片病害检测方法。利用ISRC(改进稀疏表示分类器)技术对检测到的疾病进行检测。首先采用GENABC聚类方法对输入图像进行影响区域分割。然后利用特征提取技术从影响区域中提取特征。本文采用改进变换编码局部模式提取纹理特征,增强梯度特征提取形状,改进颜色直方图提取颜色。然后将这些特征提供给ISRC分类器,以获得受影响叶片上的确切疾病类型。为了分析所提出的方法的性能,我们使用了四个指标。它们是分类正确率、错误率、精确值和召回值。从实验结果的分析来看,ISRC方法比现有方法的结果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Informatologia
Informatologia Social Sciences-Law
自引率
0.00%
发文量
15
审稿时长
16 weeks
期刊介绍: INFORMATOLOGIA is scientific journal which is dealing with general and specific problems in scientific field of Information Science. INFORMATOLOGIA publishes scientific and professional papers from information and communication sciences, which are refering to theory, technology and praxis of information and communication, education, communication science, journalism, public relations, media and visual communication, organisation and translotology and papers from related scientific fields. INFORMATOLOGIA is beeing published over thirty years and it gathers prominent experts in field of Information and Communication Science. The journal is published four times a year and it publishes scientific papers.
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